关于检测两个变量之间因果关系的人群异质性:双胞胎数据的有限混合建模。

IF 2.6 4区 医学 Q2 BEHAVIORAL SCIENCES
Philip B Vinh, Brad Verhulst, Hermine H M Maes, Conor V Dolan, Michael C Neale
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引用次数: 0

摘要

因果推断本身就很复杂,而且依赖于难以验证的关键假设。一个强有力的假设是种群同质性,即假设个体间的因果方向保持一致。然而,不同亚人群的因果方向可能存在差异,从而导致潜在的异质性。以精神病学为例,抑郁症和药物使用障碍等疾病的并发可能有多种原因,包括共同的遗传或环境因素(共同原因)或疾病之间的直接因果关系。被诊断出患有两种疾病的患者,其中一种可能被认为是原发性疾病,另一种可能被认为是继发性疾病,这表明存在不同类型的合并症。例如,在某些人身上,抑郁症可能导致药物使用,而在另一些人身上,药物使用可能导致抑郁症。我们将双生子数据的因果方向(DoC)模型与有限混合物建模相结合,考虑了因果方向上的潜在异质性,从而可以计算出个体层面上不同因果方向的可能性。通过模拟,我们证明了使用因果方向双胞胎混合物(mixDoC)模型检测和模拟因果方向不同导致的异质性的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Detection of Population Heterogeneity in Causation Between Two Variables: Finite Mixture Modeling of Data Collected from Twin Pairs.

Causal inference is inherently complex and relies on key assumptions that can be difficult to validate. One strong assumption is population homogeneity, which assumes that the causal direction remains consistent across individuals. However, there may be variation in causal directions across subpopulations, leading to potential heterogeneity. In psychiatry, for example, the co-occurrence of disorders such as depression and substance use disorder can arise from multiple sources, including shared genetic or environmental factors (common causes) or direct causal pathways between the disorders. A patient diagnosed with two disorders might have one recognized as primary and the other as secondary, suggesting the existence of different types of comorbidity. For example, in some individuals, depression might lead to substance use, while in others, substance use could lead to depression. We account for potential heterogeneity in causal direction by integrating the Direction of Causation (DoC) model for twin data with finite mixture modeling, which allows for the calculation of individual-level likelihoods for alternate causal directions. Through simulations, we demonstrate the effectiveness of using the Direction of Causation Twin Mixture (mixDoC) model to detect and model heterogeneity due to varying causal directions.

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来源期刊
Behavior Genetics
Behavior Genetics 生物-行为科学
CiteScore
4.90
自引率
7.70%
发文量
30
审稿时长
6-12 weeks
期刊介绍: Behavior Genetics - the leading journal concerned with the genetic analysis of complex traits - is published in cooperation with the Behavior Genetics Association. This timely journal disseminates the most current original research on the inheritance and evolution of behavioral characteristics in man and other species. Contributions from eminent international researchers focus on both the application of various genetic perspectives to the study of behavioral characteristics and the influence of behavioral differences on the genetic structure of populations.
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